PRIMER: Perception-Aware Robust Learning-based Multiagent Trajectory Planner
Abstract
. In decentralized multiagent trajectory planners,
agents need to communicate and exchange their positions to
generate collision-free trajectories. However, due to localization
errors/uncertainties, trajectory deconfliction can fail even if
trajectories are perfectly shared between agents. To address this
issue, we first present PARM and PARM*, perception-aware,
decentralized, asynchronous multiagent trajectory planners
that enable a team of agents to navigate uncertain environments
while deconflicting trajectories and avoiding obstacles using
perception information. PARM* differs from PARM as it is
less conservative, using more computation to find closer-tooptimal solutions. While these methods achieve state-of-the-art
performance, they suffer from high computational costs as they
need to solve large optimization problems onboard, making it
difficult for agents to replan at high rates. To overcome this
challenge, we present our second key contribution, PRIMER,
a learning-based planner trained with imitation learning (IL)
using PARM* as the expert demonstrator. PRIMER leverages
the low computational requirements at deployment of neural
networks and achieves a computation speed up to 5614 times
faster than optimization-based approaches.
PRIMER: Perception-Aware Robust Learning-based Multiagent Trajectory Planner
Palabras Clave
.Decentralized planning Trajectory deconfliction Localization uncertainty Imitation learning Neural networks